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Quantifying colorimetric tests using a smartphone app based on machine learning classifiers

[Display omitted] •The ‘ChemTrainer’ smartphone application was developed for colorimetric detection.•Hydrogen peroxide strip images were used to train for machine learning classifiers.•Over 90% classification accuracy was obtained for primary peroxide levels.•Color constancy algorithms positively a...

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Published in:Sensors and actuators. B, Chemical Chemical, 2018-02, Vol.255, p.1967-1973
Main Authors: Solmaz, Mehmet E., Mutlu, Ali Y., Alankus, Gazihan, Kılıç, Volkan, Bayram, Abdullah, Horzum, Nesrin
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cited_by cdi_FETCH-LOGICAL-c439t-b584d0a52cf92687c372ebfd0742e754ce8db958b9e1600cca28d631cf509e703
cites cdi_FETCH-LOGICAL-c439t-b584d0a52cf92687c372ebfd0742e754ce8db958b9e1600cca28d631cf509e703
container_end_page 1973
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container_start_page 1967
container_title Sensors and actuators. B, Chemical
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creator Solmaz, Mehmet E.
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Horzum, Nesrin
description [Display omitted] •The ‘ChemTrainer’ smartphone application was developed for colorimetric detection.•Hydrogen peroxide strip images were used to train for machine learning classifiers.•Over 90% classification accuracy was obtained for primary peroxide levels.•Color constancy algorithms positively affected classification accuracy. A smartphone application based on machine learning classifier algorithms was developed for quantifying peroxide content on colorimetric test strips. The strip images were taken from five different Android based smartphones under seven different illumination conditions to train binary and multi-class classifiers and to extract the learning model. A custom app, “ChemTrainer”, was designed to capture, crop, and process the active region of the strip, and then to communicate with a remote server that contains the learning model through a Cloud hosted service. The application was able to detect the color change in peroxide strips with over 90% success rate for primary colors with inter-phone repeatability under versatile illumination. The utilization of a grey-world color constancy image processing algorithm positively affected the classification accuracy for binary classifiers. The developed app with a Cloud based learning model paves the way for better colorimetric detection for paper-based chemical assays.
doi_str_mv 10.1016/j.snb.2017.08.220
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subjects Algorithms
Android application
Artificial intelligence
Change detection
Classifiers
Color
Colorimetry
Hydrogen peroxide
Illumination
Image classification
Image processing
Machine learning
Organic chemistry
Smartphone
Smartphones
Software utilities
Studies
title Quantifying colorimetric tests using a smartphone app based on machine learning classifiers
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